Vector Quantile Regression on Manifolds

Abstract

Quantile regression (QR) is a statistical tool for distribution-free estimation of conditional quantiles of a target variable given explanatory features. QR is limited by the assumption that the target distribution is univariate and defined on an Euclidean domain. Although the notion of quantiles was recently extended to multi-variate distributions, QR for multi-variate distributions on manifolds remains underexplored, even though many important applications inherently involve data distributed on, e.g., spheres (climate and geological phenomena), and tori (dihedral angles in proteins). By leveraging optimal transport theory and c-concave functions, we meaningfully define conditional vector quantile functions of high-dimensional variables on manifolds (M-CVQFs). Our approach allows for quantile estimation, regression, and computation of conditional confidence sets and likelihoods. We demonstrate the approach’s efficacy and provide insights regarding the meaning of non-Euclidean quantiles through synthetic and real data experiments.

Cite

Text

Pegoraro et al. "Vector Quantile Regression on Manifolds." Artificial Intelligence and Statistics, 2024.

Markdown

[Pegoraro et al. "Vector Quantile Regression on Manifolds." Artificial Intelligence and Statistics, 2024.](https://mlanthology.org/aistats/2024/pegoraro2024aistats-vector/)

BibTeX

@inproceedings{pegoraro2024aistats-vector,
  title     = {{Vector Quantile Regression on Manifolds}},
  author    = {Pegoraro, Marco and Vedula, Sanketh and Rosenberg, Aviv A and Tallini, Irene and Rodola, Emanuele and Bronstein, Alex},
  booktitle = {Artificial Intelligence and Statistics},
  year      = {2024},
  pages     = {1999-2007},
  volume    = {238},
  url       = {https://mlanthology.org/aistats/2024/pegoraro2024aistats-vector/}
}